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Distraction-Based Neural Networks for Document Summarization

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arxiv 1610.08462 v1 pith:SDZ6BG6J submitted 2016-10-26 cs.CL

Distraction-Based Neural Networks for Document Summarization

classification cs.CL
keywords modelsdocumentsneuralmodelingsummarizationaimsattentioncontent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Distributed representation learned with neural networks has recently shown to be effective in modeling natural languages at fine granularities such as words, phrases, and even sentences. Whether and how such an approach can be extended to help model larger spans of text, e.g., documents, is intriguing, and further investigation would still be desirable. This paper aims to enhance neural network models for such a purpose. A typical problem of document-level modeling is automatic summarization, which aims to model documents in order to generate summaries. In this paper, we propose neural models to train computers not just to pay attention to specific regions and content of input documents with attention models, but also distract them to traverse between different content of a document so as to better grasp the overall meaning for summarization. Without engineering any features, we train the models on two large datasets. The models achieve the state-of-the-art performance, and they significantly benefit from the distraction modeling, particularly when input documents are long.

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